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Published in: Journal of General Internal Medicine 10/2019

01-10-2019 | Care

Comparing Shared Patient Networks Across Payers

Authors: Justin G. Trogdon, PhD, W. H. Weir, BS, S. Shai, PhD, P. J. Mucha, PhD, T. M. Kuo, PhD, A. M. Meyer, PhD, K. B. Stitzenberg, MD, MPH

Published in: Journal of General Internal Medicine | Issue 10/2019

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Abstract

Background

Measuring care coordination in administrative data facilitates important research to improve care quality.

Objective

To compare shared patient networks constructed from administrative claims data across multiple payers.

Design

Social network analysis of pooled cross sections of physicians treating prevalent colorectal cancer patients between 2003 and 2013.

Participants

Surgeons, medical oncologists, and radiation oncologists identified from North Carolina Central Cancer Registry data linked to Medicare claims (N = 1735) and private insurance claims (N = 1321).

Main Measures

Provider-level measures included the number of patients treated, the number of providers with whom they share patients (by specialty), the extent of patient sharing with each specialty, and network centrality. Network-level measures included the number of providers and shared patients, the density of shared-patient relationships among providers, and the size and composition of clusters of providers with a high level of patient sharing.

Results

For 24.5% of providers, total patient volume rank differed by at least one quintile group between payers. Medicare claims missed 14.6% of all shared patient relationships between providers, but captured a greater number of patient-sharing relationships per provider compared with the private insurance database, even after controlling for the total number of patients (27.242 vs 26.044, p < 0.001). Providers in the private network shared a higher fraction of patients with other providers (0.226 vs 0.127, p < 0.001) compared to the Medicare network. Clustering coefficients for providers, weighted betweenness, and eigenvector centrality varied greatly across payers. Network differences led to some clusters of providers that existed in the combined network not being detected in Medicare alone.

Conclusion

Many features of shared patient networks constructed from a single-payer database differed from similar networks constructed from other payers’ data. Depending on a study’s goals, shortcomings of single-payer networks should be considered when using claims data to draw conclusions about provider behavior.
Appendix
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Metadata
Title
Comparing Shared Patient Networks Across Payers
Authors
Justin G. Trogdon, PhD
W. H. Weir, BS
S. Shai, PhD
P. J. Mucha, PhD
T. M. Kuo, PhD
A. M. Meyer, PhD
K. B. Stitzenberg, MD, MPH
Publication date
01-10-2019
Publisher
Springer International Publishing
Published in
Journal of General Internal Medicine / Issue 10/2019
Print ISSN: 0884-8734
Electronic ISSN: 1525-1497
DOI
https://doi.org/10.1007/s11606-019-04978-9

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